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A Huber Loss Minimization Approach to Byzantine Robust Federated Learning

Puning Zhao, Fei Yu, Zhiguo Wan

2024Proceedings of the AAAI Conference on Artificial Intelligence17 citationsDOIOpen Access PDF

Abstract

Federated learning systems are susceptible to adversarial attacks. To combat this, we introduce a novel aggregator based on Huber loss minimization, and provide a comprehensive theoretical analysis. Under independent and identically distributed (i.i.d) assumption, our approach has several advantages compared to existing methods. Firstly, it has optimal dependence on epsilon, which stands for the ratio of attacked clients. Secondly, our approach does not need precise knowledge of epsilon. Thirdly, it allows different clients to have unequal data sizes. We then broaden our analysis to include non-i.i.d data, such that clients have slightly different distributions.

Topics & Concepts

Byzantine architectureMinificationComputer scienceFederated learningMachine learningEconometricsArtificial intelligenceHistoryMathematicsWorld Wide WebAncient historyPrivacy-Preserving Technologies in Data